US12100954B2 - Transient stability assessment method for an electric power system - Google Patents
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F30/00—Computer-aided design [CAD]
- G06F30/20—Design optimisation, verification or simulation
- G06F30/27—Design optimisation, verification or simulation using machine learning, e.g. artificial intelligence, neural networks, support vector machines [SVM] or training a model
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- H—ELECTRICITY
- H02—GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
- H02J—CIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
- H02J3/00—Circuit arrangements for AC mains or AC distribution networks
- H02J3/24—Arrangements for preventing or reducing oscillations of power in networks
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- H02J3/0014—
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/04—Architecture, e.g. interconnection topology
- G06N3/045—Combinations of networks
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F18/00—Pattern recognition
- G06F18/20—Analysing
- G06F18/23—Clustering techniques
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F30/00—Computer-aided design [CAD]
- G06F30/10—Geometric CAD
- G06F30/18—Network design, e.g. design based on topological or interconnect aspects of utility systems, piping, heating ventilation air conditioning [HVAC] or cabling
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/04—Architecture, e.g. interconnection topology
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/04—Architecture, e.g. interconnection topology
- G06N3/0499—Feedforward networks
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
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- G—PHYSICS
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- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/08—Learning methods
- G06N3/09—Supervised learning
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- H—ELECTRICITY
- H02—GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
- H02J—CIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
- H02J3/00—Circuit arrangements for AC mains or AC distribution networks
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F2111/00—Details relating to CAD techniques
- G06F2111/02—CAD in a network environment, e.g. collaborative CAD or distributed simulation
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F2113/00—Details relating to the application field
- G06F2113/04—Power grid distribution networks
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- H02J2103/30—
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- H—ELECTRICITY
- H02—GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
- H02J—CIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
- H02J2203/00—Indexing scheme relating to details of circuit arrangements for AC mains or AC distribution networks
- H02J2203/20—Simulating, e g planning, reliability check, modelling or computer assisted design [CAD]
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- Y—GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y04—INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
- Y04S—SYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
- Y04S40/00—Systems for electrical power generation, transmission, distribution or end-user application management characterised by the use of communication or information technologies, or communication or information technology specific aspects supporting them
- Y04S40/20—Information technology specific aspects, e.g. CAD, simulation, modelling, system security
Definitions
- the present disclosure relates to a field of stability analysis technology of an electric power system, and more particularly relates to a transient stability assessment method for an electric power system.
- Transient instability is a significant cause of widespread electric outages of an electric power system.
- One of important problems considered in safety prevention and control of the electric power system is how to accurately determine the transient stability of the electric power system.
- the present disclosure introduces a Multi-Task Learning and Siamese Network and proposes a transient stability assessment method based on the Multi-Task Learning and Siamese Network for an electric power system in consideration of multiple predetermined failures.
- a cluster method is used to cluster data sets under different failures, and classifying different failures into different clusters according to a similarity evaluation index between different failures.
- the Multi-Task Learning and Siamese Network is used to learn the data sets under different failures in the same cluster, which is equivalent to effectively increasing the amount of training data for the transient stability assessment task per failure, such that a generalization ability of the transient stability assessment model under the predetermined failure may be improved.
- An objective of the present disclosure is to provide a transient stability assessment method for an electric power system.
- the present disclosure adopts a cluster method to cluster data sets under different predetermined failures to classify the data sets into different clusters according to a similarity and performing training on the data sets under different failures in a same cluster to construct a multi-task siamese neural network for the transient stability assessment under different predetermined failures.
- An accuracy of the transient stability assessment model can be improved effectively through the similar data sets and the multi-task siamese neural network.
- the transient stability assessment method for an electric power system collects steady-state data of the electric power system before a failure occurs and transient stability tags from transient stability simulation data, obtains data sets under different predetermined failures based on a statistical result of the transient stability tags and a maximum-minimum method, constructs a similarity evaluation index between different predetermined failures based on a Jaccard distance and a Hausdorff distance, obtains clusters of different failures based on a clustering algorithm, trains a parameters-shared siamese neural network for different predetermined failures in each cluster to obtain a multi-task siamese neural network for the transient stability assessment, and obtains transient stability assessment results of the electric power system under all ⁇ predetermined failures based on the statistical result of the transient stability tags and the multi-task siamese neural network for the transient stability assessment.
- the similarity between data sets under different predetermined failures in the electric power system is considered to construct the similarity evaluation index based on the Jaccard distance and the Hausdorff distance
- the data sets under different predetermined failures are clustered based on the similarity evaluation index
- the parameters-shared multi-task siamese neural network for the transient stability assessment is trained for different predetermined failures in the same cluster.
- FIG. 1 B is a schematic diagram showing a l-th multi-task siamese neural network M l as mentioned in step (4) of FIG. 1 A .
- the transient stability assessment method for an electric power system may include the following steps.
- y a k represents the transient stability tag of the electric power system under the a-th predetermined failure occurring in the k-th operating condition.
- P Gi k , V Gi k , P Lj k and Q Lj k in the raw data set obtained in step (1-1) are normalized to obtain a normalized active power ⁇ tilde over (P) ⁇ Gi k and a normalized generator voltage ⁇ tilde over (V) ⁇ Gi k of each generator, a normalized active power ⁇ tilde over ( ⁇ tilde over (P) ⁇ ) ⁇ Lj k and a normalized inactive power ⁇ tilde over (Q) ⁇ Lj k of each line before a failure occurs in the k-th operating condition.
- a normalization formula may be denoted as follows.
- the a-th predetermined failure may be classified into a failure set Z 1 and the subsequent construction of transient stability assessment siamese neural network is not performed. If the transient stability tag y a k under the a-th predetermined failure satisfies
- the a-th predetermined failure may be classified into a failure set Z 0 and the subsequent construction of transient stability assessment siamese neural network is not performed. If the transient stability tag y a k under the a-th predetermined failure satisfies
- the a-th predetermined failure may be classified into a failure set Z 2 .
- the b predetermined failures may be denoted as E(1), E(2), . . . ,E(b)
- the transient stability tags of the b predetermined failures may be denoted as y E(1) k , y E(2) k , y E(b) k .
- the failure set Z 1 is empty
- the failure set Z 0 includes one predetermined failure
- a pre-processed data set O 0 is obtained based on ⁇ tilde over (P) ⁇ Gi k , ⁇ tilde over (V) ⁇ Gi k , ⁇ tilde over (P) ⁇ Lj k and ⁇ tilde over (Q) ⁇ Lj k obtained in step (1-2) and the transient stability tags y E(1) k y E(2) k , . . . , y E(b) k in the failure set Z 2 obtained in step (1-3).
- the data set O 0 may be represented as follows.
- O 0 [ ⁇ tilde over (P) ⁇ Gi k , ⁇ tilde over (V) ⁇ Gi k , ⁇ tilde over (P) ⁇ Lj k , ⁇ tilde over (Q) ⁇ Lj k ,y E(1) k y E(2) k , . . . ,y E(b) k ]
- s 1 ⁇ b operating conditions are set based on historical operational aspects and future plannings of the electric power system in consideration of a situation that the electric power system may have heavy loads in future.
- a transient stability simulating calculation is performed using a numerical computation method to obtain generator features and line features before a failure occurs as well as transient stability tags under different predetermined failures.
- a new data set O new is obtained based on a statistical result of the transient stability tags and a maximum-minimum normalization method as described in step (1-2).
- the step may include the following.
- s 1 ⁇ b operating conditions are set for the electric power system as described in step (1-1) based on historical operational aspects and future plannings of the electric power system in consideration of a situation that the electric power system may have heavy loads in future.
- the s 1 ⁇ b operating conditions may be denoted as s 0 +1,s 0 +2, . . . ,s 0 +s 1 ⁇ b.
- a transient stability simulating calculation is performed on the E(1+ ⁇ (d ⁇ 1 ⁇ s 0 )/s 1 ⁇ )-th predetermined failure in the failure set Z 2 occurring in the d-th operating condition obtained in step (1-3) using a numerical computation method.
- s 1 3000.
- step (2-2) based on a maximum-minimum normalization method as described in step (1-2), P Gi d V Gi d , P Lj d and Q Lj d in the data set [P Gi d V Gi d , P Lj d Q Lj d , y E(1+ ⁇ (d ⁇ 1 ⁇ s 0 )/s 1 ⁇ ) d ] obtained in step (2-1) are normalized to obtain a normalized active power ⁇ tilde over (P) ⁇ Gi d and a normalized generator voltage ⁇ tilde over (V) ⁇ Gi d of each generator, a normalized active power ⁇ tilde over (P) ⁇ Lj d and a normalized reactive power ⁇ tilde over (Q) ⁇ Lj d of each line before a failure occurs in the d-th operating condition.
- a pre-processed data set O new is obtained based on ⁇ tilde over (P) ⁇ Gi d , ⁇ tilde over (V) ⁇ Gi d , ⁇ tilde over (P) ⁇ Lj d and ⁇ tilde over (Q) ⁇ Lj d obtained in step (2-2) and the transient stability tags y E(1+ ⁇ (d ⁇ 1 ⁇ s 0 )/s 1 ⁇ ) d obtained in step (2-1).
- the data set O new may be represented as follows.
- a similarity evaluation index D(e,g) of the b predetermined failures in the failure set Z 2 obtained in step (1-3) is calculated.
- e represents the e-th predetermined failure in the failure set Z 2 obtained in step (1-3)
- e E(1), . . . , E(b)
- g represents the g-th predetermined failure in the failure set Z 2 obtained in step (1-3)
- g E(1), . . . , E(b) and g ⁇ e.
- the b predetermined failures in the failure set Z 2 obtained in step (1-3) are clustered based on the similarity evaluation index D(e,g) and a clustering algorithm, to obtain B clusters.
- the step may include the following.
- a Jaccard distance index between a transient stability tag vector (y e 1 , y e 2 . . . , y e s 0 ) under the e-th predetermined failure in the failure set Z 2 occurring in all the so operating operations and a transient stability tag vector (y g 1 , y g 2 , . . . ,y g s 0 ) under the g-th predetermined failure in the failure set Z 2 occurring in all the so operating operations is determined as follows.
- M 00 represents the number of operating conditions where both y e k and y g k equal to 0
- M 01 represents the number of operating conditions where y e k equals to 0 but y g k equals to 1
- M 01 represents the number of operating conditions where y e k equals to 1 but y g k equals to 0
- the similarity evaluation index D(e,g) between different predetermined failures in the failure set Z 2 is calculated based on J(e,g) obtained in step (3-1) and H(e,g) obtained in step (3-2).
- D ( e,g ) w 1 ⁇ J ( e,g )+ w 2 ⁇ H ( e,g )
- the clustering algorithm and the cluster number B may be set according to human experiences. Or the cluster number B may be set to 2, 3, . . . ,b. Silhouette coefficients of cluster results corresponding to different cluster numbers are calculated, and the cluster number corresponding to the highest silhouette coefficient is determined as the optimum cluster number.
- a multi-task siamese neural network for the transient stability assessment is trained based on the data set O 0 obtained in step (1), the data set O new obtained in step (2) and the B cluster results obtained in step (3).
- the step may include the following.
- step (1-4) the data set O 0 obtained in step (1-4) and the data set O new obtained in step (2-3) are classified into b data sets D fault (1), D fault (2), . . . ,D fault (b) corresponding respectively to the b predetermined failures in step (1-3) based on difference in the predetermined failures.
- the input features of the data set corresponding to the e-th predetermined failure include a normalized active power ⁇ tilde over (P) ⁇ Gi u(e) and a normalized generator voltage ⁇ tilde over (V) ⁇ Gi u(e) of each generator, a normalized active power ⁇ tilde over (P) ⁇ Lj u(e) and a normalized reactive power ⁇ tilde over (Q) ⁇ Lj u(e) of each line before the failure occurs.
- the transient stability tag of each data set is denoted as y e u(e) .
- FIG. 2 A and FIG. 2 B A schematic diagram of the data sets is shown in FIG. 2 A and FIG. 2 B .
- a structure of M l may be described as follows, as illustrated in FIG. 1 B .
- M l includes p(l) input layers.
- the r(l)-th input layer includes 2 ⁇ N+2 ⁇ M neurons.
- the inputs of each neuron may include a normalized active power ⁇ tilde over (P) ⁇ Gi u(q(i)r(l)) and a normalized generator voltage ⁇ tilde over (V) ⁇ Gi u(q(i)r(l)) of each generator, a normalized active power P Lj u(q(i)r(l)) and a normalized reactive power ⁇ tilde over (Q) ⁇ Lj u(q(i)r(l)) of each line before the failure occurs.
- u(q(l) r(l) ) represents the u(q(l)r(1))-th operating condition corresponding to the q(l) r(l) (-th predetermined failure in the l-th cluster.
- the parameter-shared unit of M l includes t 1 (l) hidden layers.
- the inputs of the first hidden layer h 1 (l) may be the p(l) input layers of M l in step (3-2-1).
- the number t 1 (l) of the hidden layers and the number of neurons in each hidden layer may be determined according to human experiences or repeated experiments meeting a calculation precision.
- the first hidden layer may include 128 neurons
- the second hidden layer may include 64 neurons
- the third hidden layer may include 32 neurons.
- the p(l) output units of M l may include t 2 (l) hidden layers and one output layer.
- the inputs of the first hidden layer in each output unit may be outputs of the t 1 (l)-th hidden layer of the parameter-shared unit in step (4-2-2).
- the number t 2 (l) of hidden layers and the number of neurons in each hidden layer may be determined according to human experiences or repeated experiments meeting a calculation precision.
- t 2 (l) 1, i.e., each output unit may include one hidden layer and the number of neurons in the hidden layer may be 32.
- the output layer may include one neuron, and the output layer may adopt the Sigmoid function as an activation function.
- the output of the r(l)-th output unit of M l may be ⁇ (q(l) r(l) u(q(l) r(l) ) .
- ⁇ (q(l) r(l) u(q(l) r(l) ) >0.5 it indicates that the transient instability occurs in the electric power system after the q(l) r(l) -th predetermined failure in the l-th cluster occurs under the u(q(l) r(l) -th operating condition.
- the transient stability assessment results of the electric power system under all the ⁇ predetermined failures in the failure sets Z 0 , Z 1 and are Z 2 are obtained based on the statistical result of the transient stability tags in step (1-3) and the multi-task siamese neural networks obtained in step (4).
- the step may include the following.
- step (1-3) the transient stability assessment results of the electric power system under the predetermined failures in the failure sets Z 0 and Z 1 in step (1-3) are obtained based on the statistical result of the transient stability tags in step (1-3).
- the step may include the following.
- the transient stability assessment results of the electric power system under the predetermined failures in the failure set Z 0 in step (1-3) are determined as maintaining transient stability.
- step (4) the B multi-task siamese neural networks obtained in step (4) are used to obtain the transient stability assessment results of the electric power system under the b predetermined failures in the failure set Z 2 in step (1-3).
- the step may include the following.
- an active power P Gi and a generator voltage V Gi of each generator, an active power P Lj and an reactive power Q Lj of each line of the electric power system are collected from a data collecting and monitoring system or a wide are measurement system to construct initial input features.
- step (5-2-2) the maximum-minimum normalization described in step (1-2) is used to normalize the initial input features to obtain normalized input features.
- step (5-2-3) the normalized input features obtained in step (5-2-2) are inputted into the B multi-task siamese neural networks obtained in step (4) to obtain the transient stability assessment results of the electric power system under the b predetermined failures in the failure set Z 2 in step (1-3).
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Abstract
Description
(1-3) values of the transient stability tags [y1 k, y2 k . . . ,ya k, . . . ,yƒ k] in the s0 operating conditions obtained in step (1-1) are counted. If the transient stability tag ya k under the a-th predetermined failure satisfies
it indicates that the a-th predetermined failure always causes the k=1 transient instability of the electric power system, then the a-th predetermined failure may be classified into a failure set Z1 and the subsequent construction of transient stability assessment siamese neural network is not performed. If the transient stability tag ya k under the a-th predetermined failure satisfies
it indicates that the a-th predetermined failure does not cause the transient instability of the electric power system, then the a-th predetermined failure may be classified into a failure set Z0 and the subsequent construction of transient stability assessment siamese neural network is not performed. If the transient stability tag ya k under the a-th predetermined failure satisfies
it indicates that the a-th predetermined failure may cause the transient instability of the electric power system in some operating conditions, then the a-th predetermined failure may be classified into a failure set Z2. Assuming that Z2 includes b predetermined failures, the b predetermined failures may be denoted as E(1), E(2), . . . ,E(b), and the transient stability tags of the b predetermined failures may be denoted as yE(1) k, yE(2) k, yE(b) k. In an embodiment of the present disclosure, the failure set Z1 is empty, the failure set Z0 includes one predetermined failure, and the failure set Z2 includes 33 predetermined failures, i.e., b=33.
O 0 =[{tilde over (P)} Gi k ,{tilde over (V)} Gi k ,{tilde over (P)} Lj k ,{tilde over (Q)} Lj k ,y E(1) k y E(2) k , . . . ,y E(b) k]
O new =[{tilde over (P)} Gi d ,{tilde over (V)} Gi d ,{tilde over (P)} Lj d ,{tilde over (Q)} Lj d y E(1+└(d−1−s
D(e,g)=w 1 ×J(e,g)+w 2 ×H(e,g)
Claims (2)
O 0 =[{tilde over (P)} Gi k ,{tilde over (V)} Gi k ,{tilde over (P)} Lj k ,{tilde over (Q)} Lj k ,y E(1) k y E(2) k , . . . ,y E(b) k]
O new =[{tilde over (P)} Gi d ,{tilde over (V)} Gi d ,{tilde over (P)} Lj d ,{tilde over (Q)} Lj d y E(1+└(d−1−s
D(e,g)=w 1 ×J(e,g)+w 2 ×H(e,g)
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